ktx/docs-site/content/agents-setup.md
2026-05-19 15:10:35 +02:00

12 KiB

Goal

Set up KTX from scratch end-to-end as a fully autonomous, agent-driven replacement for the interactive ktx setup wizard. Detect the environment, install missing prerequisites, ask the user only for information you genuinely need (which connections to add, credentials), write a valid configuration, verify it works, and run a fast schema ingest. Keep the user updated throughout.

Operating principles

  • Be autonomous. Detect, decide, and act. Only ask the user when you need information that only they can provide: project location, which databases/sources to connect, credentials, and similar choices.
  • Stream short status updates. Before each major phase ("Checking prerequisites…", "Installing uv…", "Configuring warehouse connection…", "Running fast ingest…") print a one-line update. Not chatty — just enough that the user can see what's happening.
  • Verify against docs, never guess. CLI flags, config keys, and command names must come from the docs or from ktx <command> --help. If something looks wrong or missing, say so explicitly.
  • Print every command you run and its exit code. Terse, not silent.
  • Fail loudly with cause + fix. When a command fails: capture the exact error, identify the cause, change something, retry. Never retry an unchanged command. Exceptions for known soft-failures are listed in Phase 4 — handle those without retrying.
  • No LLM-based ingestion in this flow. Only --fast ingest (schema-only). The user can run --deep later.
  • Platform-agnostic. Detect the host OS first and pick the right install commands / path syntax. Anything path- or shell-specific must branch on OS.

Authoritative docs

KTX docs are served at https://docs.kaelio.com/ktx/. Start by fetching https://docs.kaelio.com/ktx/llms.txt to discover the docs map. Scan it for a "troubleshooting" entry — if one exists, read it before running install/setup so you can apply known fixes preemptively rather than after failing. If no troubleshooting page is listed (current state of the docs), proceed. Then fetch any other .md pages you need (setup, ingest, status, connection types). Never invent CLI flags or config keys — verify against the docs or ktx --help / ktx <subcommand> --help.

Note on the ktx status JSON example in the docs. The docs page for ktx status shows an example shaped like {"title": "...", "checks": [...]}. That example is outdated. The real CLI output uses a top-level verdict field plus a connections[] array — see Phase 5 for the canonical success criteria. Trust the shape in this prompt over the docs example.

Workflow

Phase 1 — Detect environment

Determine the host OS (e.g. via uname -s, process.platform, or $env:OS). Use the right install commands per OS for the rest of this flow.

Tool macOS / Linux Windows (PowerShell)
uv curl -LsSf https://astral.sh/uv/install.sh | sh then re-source shell env irm https://astral.sh/uv/install.ps1 | iex
Node.js use system / fnm / nvm — do not auto-install use system / nvm-windows — do not auto-install
KTX CLI npm install -g … (see Phase 2) npm install -g … (see Phase 2)

If Node.js is missing, stop and ask the user to install it (https://nodejs.org/). Do not attempt to auto-install Node.

Phase 2 — Verify and install prerequisites

Check each tool in order; install only if missing.

  1. Node.js — run node --version. Require >= 22. If missing or older, stop and instruct the user.
  2. uv — run uv --version. If missing, run the OS-appropriate install command, then re-source the shell environment (export PATH="$HOME/.local/bin:$PATH" on Linux/macOS) so uv is on PATH.
  3. KTX CLI
    • Install ktx with npm install -g @kaelio/ktx
    • Verify with ktx --version.

Print one status line per tool ("✓ uv 0.11.15 found", "Installing uv…", "✓ ktx 0.x.y installed").

Phase 3 — Gather user choices

Ask the user (grouped if your harness supports it; otherwise sequentially):

  1. Project directory. Default: current working directory. Confirm before continuing.
  2. LLM provider. Default: claude-code with model sonnet (the user is already inside Claude Code; no extra API key needed). Offer anthropic (paste API key, stored as env: or file: ref) and vertex (GCP project + location) as alternatives. Skip if defaults are accepted.
  3. Embeddings backend. Default: sentence-transformers (local, no API key, managed Python runtime). Offer openai only if the user has a key.
  4. Database connections. Ask how many to add, then loop. For each, collect:
    • Connection name (e.g. warehouse, analytics).
    • Driver: one of sqlite, postgres, mysql, clickhouse, sqlserver, bigquery, snowflake.
    • Connection URL/DSN (or service-account file for BigQuery). Accept env:VAR_NAME or file:/abs/path to avoid pasting raw secrets.
      • Heads-up for the user: even if they paste a literal URL, KTX will silently relocate it into <project>/.ktx/secrets/<connection>-url and rewrite ktx.yaml to url: file:… — this is correct, secure behavior and not a bug.
    • Schemas / datasets to include (postgres / sqlserver / snowflake / bigquery only).
    • Optional enabled_tables allowlist if the user wants to scope ingest to specific tables.
  5. BI / metadata sources (dbt, Metabase, Looker, LookML, MetricFlow, Notion). Default: none. Ask only if the user mentions them.

Phase 4 — Configure the project

Drive the existing wizard non-interactively (verify exact flag names with ktx setup --help and the docs — the automation flags are hidden from help but accepted):

ktx setup \
  --project-dir <path> \
  --new \
  --no-input --yes \
  --llm-backend <claude-code|anthropic|vertex> --llm-model <model> \
  [--anthropic-api-key-env ANTHROPIC_API_KEY | --anthropic-api-key-file <path>] \
  [--vertex-project <p> --vertex-location <loc>] \
  --embedding-backend <sentence-transformers|openai> \
  [--embedding-api-key-env OPENAI_API_KEY] \
  --skip-sources \
  --database <driver> --new-database-connection-id <name> --database-url <url|env:VAR|file:/path> \
    [--database-schema <schema> …]
  # repeat the --database / --new-database-connection-id / --database-url / --database-schema block per connection

Notes on the flags above:

  • --new is required when bootstrapping an empty directory; use --existing instead when re-running setup against a project that already has a ktx.yaml.
  • There is no --skip-agents flag. The agent integration step is opt-in: setup leaves it alone unless you pass --agents --target <target>. So you do not need to skip it — just don't pass --agents.
  • --skip-sources is correct and is the documented way to leave BI/metadata sources unconfigured.

Known soft-failure: ktx setup exits 1 after a successful fast build

When you select a configuration that only does fast (schema-only) ingest, ktx setup's final readiness verification fails with:

KTX context build did not pass agent-readiness verification.
  <connection>: deep database context has not completed.

This is expected and does not mean setup failed. Treat the exit code as a soft-failure only if all of the following hold:

  • The build log shows the fast ingest reached [100%] Scan completed for every configured connection.
  • ktx connection test <name> (run next) exits 0 for every connection.
  • ktx status --json --no-input reports verdict: "ready".

If those three conditions hold, proceed to Phase 5 without retrying setup, and do not switch to --deep to "fix" the readiness gate — deep ingest is explicitly out of scope. Mention this in the final report under "Docs / CLI gaps" so the user is aware.

If any of those three conditions do not hold, this is a real failure — capture the error, fetch the relevant docs page, fix the cause, retry.

After ktx setup writes ktx.yaml, edit it directly for anything flags don't cover:

  • Per-connection enabled_tables allowlist (snake_case, under connections.<name>.enabled_tables).
  • Any advanced settings the user requested.

Use a YAML-aware editor (e.g. uv run python -c "import yaml; …") — do not hand-edit blindly.

Phase 5 — Verify

ktx setup already runs a fast schema ingest of every database connection it configures, so you do not need to re-ingest by default. For each configured connection:

ktx connection test <connection-name>        # must exit 0

Only re-run ingest if setup's build log did not reach 100% for that connection:

ktx ingest <connection-name> --fast --no-input

Mutex warning on ktx ingest: passing both --yes and --no-input fails with Choose only one runtime install mode: --yes or --no-input. Setup already installed the managed Python runtime, so pass only --no-input to ktx ingest. (--yes is only needed when an ingest invocation has to install the runtime itself, which is not the case here.)

Then run the global health check:

ktx status --json --no-input

Success requires (canonical shape — supersedes the example in the docs):

  • verdict: "ready" at the top of the JSON.
  • Every connections[].status === "ok".
  • ktx connection test <name> exited 0 for every connection.

Do not run --deep ingest in this flow — that requires LLM time and is out of scope.

Optional: directly probe the embeddings daemon

If the user asks for stronger verification that sentence-transformers is actually serving (not just that setup said "ok"), do all of:

  1. ktx dev runtime status --json → expect "kind": "ready" and "features": [..., "local-embeddings"].
  2. pgrep -fa ktx-daemon → expect a process running ktx-daemon serve-http.
  3. curl -sS http://127.0.0.1:<port>/health → expect HTTP 200 with {"status":"healthy",…}.
  4. curl -sS -X POST http://127.0.0.1:<port>/embeddings/compute -H 'content-type: application/json' -d '{"text":"hello"}' → expect {"embedding": [...384 floats...]}.

Discover the port from setup's log line Started KTX local embeddings daemon: http://127.0.0.1:<port> or from the daemon's OpenAPI at GET /openapi.json. Note: the routes are /health and /embeddings/compute — not /healthz or /embeddings.

Phase 6 — Final report

Print a structured report:

KTX SETUP COMPLETE

Project:     <path>
LLM:         <backend> / <model>
Embeddings:  <backend> / <model>
Runtime:     managed Python ✓ (if sentence-transformers daemon was started)

Connections:
  - <name> (<driver>)  status=ok  schemas=[…]  tables=<N>
  - …

Sources:     <list or "none">
Verdict:     ready

Then Next steps (copy-pasteable):

  1. Enrich with AI descriptions and embeddings: ktx ingest <connection> --deep (several minutes per connection).
  2. Add more connections later by rerunning this setup or via ktx setup --existing --database … --new-database-connection-id ….
  3. Configure BI sources (dbt, Metabase, Looker, LookML, MetricFlow, Notion) — see ktx setup --help for --source … flags.
  4. Install agent integration: ktx setup --agents --target <claude-code|claude-desktop|codex|cursor|opencode|universal> (with optional --global for claude-code/codex).
  5. Connect the agent / MCP: see docs at https://docs.kaelio.com/ktx/.

Under Docs / CLI gaps to flag include any of these that applied during your run:

  • ktx setup exits non-zero after a successful fast build (deep-readiness gate); status reports ready.
  • ktx ingest rejects --yes and --no-input together; docs don't note the conflict.
  • ktx status --json real shape (verdict, connections[]) doesn't match the example in the docs page.
  • The pasted DB URL was moved to .ktx/secrets/<name>-url automatically.

End with a single line: RESULT: PASS or RESULT: FAIL — <one-line reason>.

Operating rules (recap)

  • Print every command you run and its exit code. Status updates may be terse, but never silent.
  • On failure: capture the error, fetch the relevant docs page, fix the cause, retry. Never retry an unchanged command.
  • Known soft-failures (listed in Phase 4 and Phase 5) are not real failures — handle them as documented; do not retry or escalate.
  • If you find a docs/CLI gap ("docs say X but CLI does Y"), call it out in the final report.
  • Never commit credentials — KTX accepts env: and file: references; prefer those. KTX will also auto-relocate literal URLs into .ktx/secrets/, but that does not protect anyone who pasted the URL into chat history.